基于监督学习技术的印度开放街道地图数据集内在参数质量评估

Saravjeet Singh, Jaiteg Singh
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引用次数: 4

摘要

数据的准确性对数据驱动系统的有效运行起着至关重要的作用。OpenStreetMap作为许多基于位置的服务的空间数据库的来源,对它们的性能有很大的贡献。OpenStreetMap是一个自愿的、非专有的数据集,因此它更容易受到错误和差异的影响。为了将OpenStreetMap数据用于基于位置的服务,数据必须不受拓扑和几何误差的影响。本文对OpenStreetMap (OSM)数据中与不同对象相关的拓扑错误进行了检测。旁遮普和哈里亚纳邦(印度)的OSM数据被用作寻找拓扑错误的测试数据。本研究的重点是开发一个框架,以增强用户对OSM数据的拓扑一致性。提出了一种监督决策树方法来发现OSM数据库中的拓扑错误。该框架使用REST api与OSM服务器进行数据通信。本研究的结果将有助于用户提高OSM数据的质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intrinsic Parameters based Quality Assessment of Indian OpenStreetMap Dataset using Supervised Learning Technique
Accuracy of the data plays a crucial role in the effective working of data-driven systems. OpenStreetMap being the source of a spatial database for many location-based services highly contributes towards their performance. OpenStreetMap is a volunteered, non-proprietary dataset so it is more vulnerable to errors and discrepancies. To use the OpenStreetMap data for location-based services, it is mandatory that data should not suffer from topological and geometrical errors. In this paper, topological errors associated with different objects in OpenStreetMap (OSM) data are detected. OSM data of Punjab and Haryana (India) has been taken as test data for finding topological errors. This study is focused on developing a framework for augmenting the topological consistency of OSM data by users. A supervised decision tree approach is presented to find the topological errors in the OSM database. The framework uses REST APIs for communication of data to and from the OSM server. The outcome of this study would certainly help the users to improve the quality of OSM data.
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